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2017 | Supplement | Buchkapitel

Image-Based Smoke Detection in Laparoscopic Videos

verfasst von : Andreas Leibetseder, Manfred Jürgen Primus, Stefan Petscharnig, Klaus Schoeffmann

Erschienen in: Computer Assisted and Robotic Endoscopy and Clinical Image-Based Procedures

Verlag: Springer International Publishing

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Abstract

The development and improper removal of smoke during minimally invasive surgery (MIS) can considerably impede a patient’s treatment, while additionally entailing serious deleterious health effects. Hence, state-of-the-art surgical procedures employ smoke evacuation systems, which often still are activated manually by the medical staff or less commonly operate automatically utilizing industrial, highly-specialized and operating room (OR) approved sensors. As an alternate approach, video analysis can be used to take on said detection process – a topic not yet much researched in aforementioned context. In order to advance in this sector, we propose utilizing an image-based smoke classification task on a pre-trained convolutional neural network (CNN). We provide a custom data set of over 30 000 laparoscopic smoke/non-smoke images, part of which served as training data for GoogLeNet-based [41] CNN models. To be able to compare our research for evaluation, we separately developed a non-CNN classifier based on observing the saturation channel of a sample picture in the HSV color space. While the deep learning approaches yield excellent results with Receiver Operating Characteristic (ROC) curves enclosing areas of over 0.98, the computationally much less costly analysis of an image’s saturation histogram under certain circumstances can, surprisingly, as well be a good indicator for smoke with areas under the curves (AUCs) of around 0.92–0.97.

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Fußnoten
1
Temperatures range from about \(100^{\circ }\)\(1200^{\circ }\) Celsius.
 
2
This effect is achieved by opening the stopcock of the laparoscopic port.
 
3
In laparoscopy usually carbon dioxide (\(CO_2\)) is used [35].
 
4
The image sequences show typical scenes from both of this study’s custom datasets, i.e. DS A and DS B (see Sect. 4.1 for details).
 
5
Approximately 20 000 non-smoke/smoke images of DS A (see Sect. 4.1 for details).
 
6
For the exact machine hardware specs, see Sect. 3.2.
 
7
SAT channel conversion takes around 3 ms for 720\(\,\times \,\)480, 10 ms for 1920\(\,\times \,\)1080.
 
8
For a 25 fps video real-time requirements would be: \(\frac{1 000}{25} = 40\,\mathrm{ms}\).
 
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Metadaten
Titel
Image-Based Smoke Detection in Laparoscopic Videos
verfasst von
Andreas Leibetseder
Manfred Jürgen Primus
Stefan Petscharnig
Klaus Schoeffmann
Copyright-Jahr
2017
DOI
https://doi.org/10.1007/978-3-319-67543-5_7

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